| Аннотацiя: | Nowadays,  there  are  many  related  works  and  methods  that  use  Neural  Networks to detect the breast cancer. However, usually they do not take into account the training time and the result of False Negative (FN) while training the model. The main  idea  of  this  paper  is  to  compare  already  existing  methods  for  detecting  the  breast cancer using Deep Learning Algorithms. Moreover, since the breast cancer is one of the most common lethal cancers and early detection helps prevent complica-tions,  we  propose  a  new  approach  and  the  use  of  the  convolutional  autoencoder.  This  proposed  model  has  shown  high  performance  with  sensitivity,  precision,  and  accuracy of 93,50%, 91,60% and 93% respectively. |